利用谷歌地球引擎绘制尼日利亚低地热带雨林保护区内油棕榈树扩张图

Q1 Environmental Science
Parks Pub Date : 2023-11-01 DOI:10.2305/vjsb2292
Ralph Adewoye, P. Ukoha, Stephen Okonkwo
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引用次数: 0

摘要

国内和工业对非洲油棕(Elaeis guineensis)产品的需求不断增长,导致其规模持续扩大。建立油棕种植园对社区经济和生态系统的影响怎么强调都不为过。本研究重点关注尼日利亚翁多州低地热带雨林所有保护区和森林保护区内油棕种植园的快速扩张。在谷歌地球引擎(GEE)中使用基于对象的图像分析(OBIA),利用分辨率为 10 米的哨兵-2A 图像绘制了 2015 年和 2020 年的油棕扩张图。我们发现,在 13 个保护区中的 8 个保护区内,小农和商业油棕榈种植园都有所扩大,其中 3 个保护区(Ipele、Onisere 和 Akure Ofosu)的油棕榈种植园数量显著增加。基于对象的分类技术结合了图像域中的上下文信息来区分景观特征(如油棕树冠特征),在将油棕从森林树冠和其他作物中划分出来方面非常有效。谷歌地球引擎是一个基于服务器的遥感域,拥有 PB 级数据,可有效监测大规模热带森林。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mapping oil palm expansion within the protected lowland rainforest of Nigeria using Google Earth engine
Increasing demand for Elaeis guineensis (African Oil Palm) products both for domestic and industrial use has led to its continuous expansion. The influence of oil palm plantation establishment on the economic well-being of communities and ecosystems cannot be over-emphasised. The study focuses on the rapid expansion of oil palm plantations within all protected areas and forest reserves in the lowland rainforests of Ondo State, Nigeria using. Object-Based Image Analysis (OBIA) was used to map oil palm expansion using 10-metre resolution Sentinel-2A images for 2015 and 2020 in Google Earth Engine (GEE). We found expansion of both smallholder and commercial oil palm plantations within eight of the thirteen protected areas with three protected areas (Ipele, Onisere and Akure Ofosu) showing a significant increase in oil palm plantation establishment. The use of object-based classification techniques, which combines contextual information within the image domain to discriminate landscape features such as oil palm canopy features, was effective in delineating oil palm from the forest canopy and other crops. While Google Earth Engine, a server-based remote sensing domain with petabytes of data, is effective for monitoring large-scale tropical forests.
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来源期刊
Parks
Parks Environmental Science-Nature and Landscape Conservation
CiteScore
5.80
自引率
0.00%
发文量
0
审稿时长
20 weeks
期刊介绍: We aim for PARKS to be a rigorous, challenging publication with high academic credibility and standing. But at the same time the journal is and should remain primarily a resource for people actively involved in establishing and managing protected areas, under any management category or governance type. We aim for the majority of papers accepted to include practical management information. We also work hard to include authors who are involved in management but do not usually find the time to report the results of their research and experience to a wider audience. We welcome submissions from people whose written English is imperfect as long as they have interesting research to report, backed up by firm evidence, and are happy to work with authors to develop papers for the journal. PARKS is published with the aim of strengthening international collaboration in protected area development and management by: • promoting understanding of the values and benefits derived from protected areas to governments, communities, visitors, business etc; • ensuring that protected areas fulfil their primary role in nature conservation while addressing critical issues such as ecologically sustainable development, social justice and climate change adaptation and mitigation; • serving as a leading global forum for the exchange of information on issues relating to protected areas, especially learning from case studies of applied ideas; • publishing articles reporting on recent applied research that is relevant to protected area management; • changing and improving protected area management, policy environment and socio-economic benefits through use of information provided in the journal; and • promoting IUCN’s work on protected areas.
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